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Al-based smart prediction of clinical disease using random forest classifier and Naive Bayes

机译:基于AL的临床疾病智能预测,随机林类分类和幼稚贝叶斯

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Healthcare practices include collecting all kinds of patient data which would help the doctor correctly diagnose the health condition of the patient. These data could be simple symptoms observed by the subject, initial diagnosis by a physician or a detailed test result from a laboratory. Thus, these data are only utilized for analysis by a doctor who then ascertains the disease using his/her personal medical expertise. The artificial intelligence has been used with Naive Bayes classification and random forest classification algorithm to classify many disease datasets like diabetes, heart disease, and cancer to check whether the patient is affected by that disease or not. A performance analysis of the disease data for both algorithms is calculated and compared. The results of the simulations show the effectiveness of the classification techniques on a dataset, as well as the nature and complexity of the dataset used.
机译:医疗保健实践包括收集各种患者数据,这些数据将有助于医生正确诊断患者的健康状况。 这些数据可能是由受试者观察到的简单症状,医师初步诊断或实验室的详细测试结果。 因此,这些数据仅用于通过使用他/她的个人医学专业知识来确定疾病的医生进行分析。 人工智能已与天真贝叶斯分类和随机森林分类算法一起使用,以分类糖尿病,心脏病和癌症等许多疾病数据集来检查患者是否受到这种疾病的影响。 计算并比较两种算法的疾病数据的性能分析。 模拟结果显示了数据集中分类技术的有效性,以及所使用的数据集的性质和复杂性。

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